Chapter 3 – Data Cleaning Fundamentals and Principles
- B – Transforming data into a masterpiece – The aim of data cleaning in the data preparation process is to refine and enhance raw data, ensuring it is accurate, consistent, and high-quality for effective analysis
- B – To prevent a cycle of perpetual data cleaning – While the other answers may have some truth to them, they do not describe why it is essential to establish a framework and principles for data cleaning efforts
- B – Data assessment, data profiling, data validation, data cleaning strategies, data transformation, data quality assurance, and documentation– These processes together are involved in the data cleaning process
- A – Patterns, distributions, and outliers – Data profiling aids in recognizing patterns, understanding distributions, and identifying outliers, providing crucial insights for effective data cleaning and quality improvement ...